March 10, 2025
Singapore
to be held in conjunction with the SupercomputingAsia 2025 (SCA25)
The complexity of scientific research calls for dynamic integration of various interconnected scientific instruments for data generation (e.g., experiments, observation, and simulation) and data analysis (e.g., AI/ML, visualization, etc.). The capability of near real-time data processing across interconnected scientific instruments is the foundation of various scientific workflows, including both traditional human-in-the-loop and autonomous ones. This is because analysis results are needed near real-time to provide time-sensitive decision-making and to steer experiments. However, as the improvement of scientific instruments leads to the generation of scientific data with unprecedented volumes and modalities, it imposes a significant strain on data processing as data acquisition, sharing, and analysis will be prohibitively time- and energy-consuming with the increase of data volumes. This landscape highlights the growing need for research efforts that focus on optimizing all stages of data processing at an extreme scale to enable near real-time processing, including but not limited to acquisition, reduction, management, storage, sharing, and analysis.
There are at least four important topics that our community is striving to answer: (1) how to design efficient data acquisition and reduction pipelines that support near-instrument preprocessing while preserving the important features for scientific pursuit; (2) how to achieve extreme-scale data curation and sharing that leverages the advanced HPC infrastructure; (3) how to accommodate near real-time data analytics at extreme-scale with streaming or urgency requirements for time-sensitive decision making. (4) how to enable high energy efficiency for all stages of scientific workflow with a performance guarantee. Tackling these challenges requires expertise from computer science, mathematics, and application domains to study the problem holistically and develop solutions.
This international workshop targets HPC applications, researchers, and domain experts with big data problems and looking for new data management and analytical workflows for their applications. The outcome of this workshop will foster the implementation of near real-time data processing workflows by accelerating all stages of the scientific research lifecycle, including large-scale data acquisition, data curation, analytics, and sharing.
We are calling for paper. Please refer to the CFP and consider submitting your work!
Chin Guok
ESnet
Scott Klasky
ORNL
Gabriel Noaje
NVIDIA
Rachana Ananthakrishnan
U of Chicago
Data acquisition and reduction
Near-instrument data preprocessing and reduction
Data reduction with feature-preservation
Novel data reduction with AI
Data storage and sharing
Data curation, placement and portability
Resilience in storage and streaming
Efficient data sharing at extreme-scale
In-storage/network preprocessing
Data analysis
Near real-time data analysis
Autonomous experiments feedback and steering
Analysis on reduced data
Data reconstruction for analysis with fidelity and resource trade-off
Inter-instrument visualization and analysis
Energy efficient HPC
Approaches to the development of energy-efficient scientific applications
Energy-efficient algorithms for scientific data analysis at scale.
Energy-efficient data management and streaming at scale.
Energy efficiency of near-real-time scientific workflow on interconnected instruments.
All papers must be original and not simultaneously submitted to another journal or conference. NRDPISI-2 will accept full papers (limited to 6 pages excluding references) and short papers (2 pages, excluding references).
Submission should be made to https://easychair.org/my/conference?conf=nrdpisi2
Full Paper submission deadline: Dec 20, 2024 (AoE)
Author notification: Jan 10, 2025 (AoE)
Camera-ready final submission deadline: Jan 24, 2025 (AoE).
Jinzhen Wang (UNCC)
Jieyang Chen (UO)
Qing Liu (NJIT)
Scott Klasky (ORNL)
Qian Gong(ORNL)
Ana Gainaru(ORNL)
John Wu(LBNL)
Xin Liang (UK)
Kai Zhao (FSU)
Zhenlu Qin (AUM)
Jieyang Chen, University of Alabama at Birmingham
Jinzhen Wang, University of North Carolina at Charlotte
Zhenlu Qin, Auburn University at Montgomery
Qing Liu, New Jersey Institute of Technology
Scott Klasky, Oak Ridge National Laboratory